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An Approach to Improve the Performance of PM Forecasters

机译:一种改善PM预报器性能的方法

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摘要

The particulate matter (PM) concentration has been one of the most relevant environmental concerns in recent decades due to its prejudicial effects on living beings and the earth’s atmosphere. High PM concentration affects the human health in several ways leading to short and long term diseases. Thus, forecasting systems have been developed to support decisions of the organizations and governments to alert the population. Forecasting systems based on Artificial Neural Networks (ANNs) have been highlighted in the literature due to their performances. In general, three ANN-based approaches have been found for this task: ANN trained via learning algorithms, hybrid systems that combine search algorithms with ANNs, and hybrid systems that combine ANN with other forecasters. Independent of the approach, it is common to suppose that the residuals (error series), obtained from the difference between actual series and forecasting, have a white noise behavior. However, it is possible that this assumption is infringed due to: misspecification of the forecasting model, complexity of the time series or temporal patterns of the phenomenon not captured by the forecaster. This paper proposes an approach to improve the performance of PM forecasters from residuals modeling. The approach analyzes the remaining residuals recursively in search of temporal patterns. At each iteration, if there are temporal patterns in the residuals, the approach generates the forecasting of the residuals in order to improve the forecasting of the PM time series. The proposed approach can be used with either only one forecaster or by combining two or more forecasting models. In this study, the approach is used to improve the performance of a hybrid system (HS) composed by genetic algorithm (GA) and ANN from residuals modeling performed by two methods, namely, ANN and own hybrid system. Experiments were performed for PM2.5 and PM10 concentration series in Kallio and Vallila stations in Helsinki and evaluated from six metrics. Experimental results show that the proposed approach improves the accuracy of the forecasting method in terms of fitness function for all cases, when compared with the method without correction. The correction via HS obtained a superior performance, reaching the best results in terms of fitness function and in five out of six metrics. These results also were found when a sensitivity analysis was performed varying the proportions of the sets of training, validation and test. The proposed approach reached consistent results when compared with the forecasting method without correction, showing that it can be an interesting tool for correction of PM forecasters.
机译:颗粒物(PM)浓度由于对生物和地球大气的偏见而成为最近几十年来最相关的环境问题。高浓度的PM以多种方式影响人类健康,导致短期和长期疾病。因此,已经开发了预测系统来支持组织和政府的决策以警告民众。由于其性能,基于人工神经网络(ANN)的预测系统已在文献中得到强调。总的来说,已经找到了三种基于ANN的方法来完成此任务:通过学习算法训练的ANN,将搜索算法与ANN相结合的混合系统以及将ANN与其他预测器相结合的混合系统。与该方法无关,通常假设从实际序列与预测之间的差异获得的残差(误差序列)具有白噪声行为。但是,可能由于以下原因而违反了该假设:预测模型的规格不正确,时间序列的复杂性或预测者未捕获的现象的时间模式。本文提出了一种通过残差建模来提高PM预报器性能的方法。该方法递归地分析剩余的残差以寻找时间模式。在每次迭代中,如果残差中存在时间模式,则该方法会生成残差的预测,以改善对PM时间序列的预测。所提出的方法既可以与一个预测器一起使用,也可以与两个或多个预测模型结合使用。在这项研究中,该方法用于通过两种方法(即ANN和自己的混合系统)执行残差建模来改善由遗传算法(GA)和ANN组成的混合系统(HS)的性能。在赫尔辛基的Kallio和Vallila站对PM2.5和PM10浓度系列进行了实验,并从六个指标进行了评估。实验结果表明,与不进行校正的方法相比,该方法在所有情况下的适应度函数均提高了预测方法的准确性。通过HS进行的校正获得了出色的性能,在适应度函数和六分之五的指标中达到了最佳结果。当执行敏感性分析以改变训练,验证和测试集的比例时,也会发现这些结果。与未经校正的预测方法相比,该方法达到了一致的结果,表明该方法可以作为校正PM预报器的有趣工具。

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